In-Silico Analysis of Curve Fitting in Angiographic Parametric Imaging in Intracranial Aneurysms
Parmita Mondal, Allison Shields, Mohammad Mahdi Shiraz Bhurwani, Kyle, A Williams, Ciprian N Ionita

TL;DR
This study evaluates the effectiveness of gamma-variate fitting in improving the accuracy of angiographic parametric imaging parameters from noisy, incomplete, or motion-affected time density curves in intracranial aneurysm analysis.
Contribution
It demonstrates that gamma-variate fitting can reliably restore TDCs and enhance API biomarker precision in virtual angiograms with simulated clinical challenges.
Findings
Gamma-variate fitting improves correlation with flow dynamics.
Fitted TDCs better recover true vascular parameters.
Method effective across various injection durations and velocities.
Abstract
In Angiographic Parametric Imaging (API), accurate estimation of parameters from Time Density Curves (TDC) is crucial. However, these estimations are often marred by errors arising from factors such as patient motion, procedural preferences, image noise, and injection variability. While fitting methods like gamma-variate fitting offer a solution to recover incomplete or corrupted TDC data, they might also introduce unforeseen biases. This study investigates the trade-offs and benefits of employing gamma-variate fitting on virtual angiograms to enhance the precision of API biomarkers. Utilizing Computational Fluid Dynamics (CFD) in patient specific 3D geometries, we generated a series of high-definition virtual angiograms at distinct inlet velocities: 0.25m/s, 0.35m/s, and 0.45m/s. These velocities were investigated across injection durations ranging from 0.5s to 2.0s. From these…
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